IDERGO (Research and Development in Ergonomics), I3A (Instituto de Investigación en Ingeniería de Aragón), University of Zaragoza, C/María de Luna, 3, 50018 Zaragoza, Spain.
Department of Design and Manufacturing Engineering, University of Zaragoza, C/María de Luna, 3, 50018 Zaragoza, Spain.
Sensors (Basel). 2023 Nov 22;23(23):9336. doi: 10.3390/s23239336.
The worldwide popularisation of running as a sport and recreational practice has led to a high rate of musculoskeletal injuries, usually caused by a lack of knowledge about the most suitable running technique for each runner. This running technique is determined by a runner's anthropometric body characteristics, dexterity and skill. Therefore, this study aims to develop a motion capture-based running analysis test on a treadmill called KeepRunning to obtain running patterns rapidly, which will aid coaches and clinicians in assessing changes in running technique considering changes in the study variables. Therefore, a review and proposal of the most representative events and variables of analysis in running was conducted to develop the KeepRunning test. Likewise, the minimal detectable change (MDC) in these variables was obtained using test-retest reliability to demonstrate the reproducibility and viability of the test, as well as the use of MDC as a threshold for future assessments. The test-retest consisted of 32 healthy volunteer athletes with a running training routine of at least 15 km per week repeating the test twice. In each test, clusters of markers were placed on the runners' body segments using elastic bands and the volunteers' movements were captured while running on a treadmill. In this study, reproducibility was defined by the intraclass correlation coefficient (ICC) and MDC, obtaining a mean value of ICC = 0.94 ± 0.05 for all variables and MDC = 2.73 ± 1.16° for the angular kinematic variables. The results obtained in the test-retest reveal that the reproducibility of the test was similar or better than that found in the literature. KeepRunning is a running analysis test that provides data from the involved body segments rapidly and easily interpretable. This data allows clinicians and coaches to objectively provide indications for runners to improve their running technique and avoid possible injury. The proposed test can be used in the future with inertial motion capture and other wearable technologies.
全球范围内,跑步作为一种运动和娱乐方式变得越来越流行,随之而来的是肌肉骨骼损伤的高发率,这通常是由于缺乏对最适合每位跑步者的跑步技术的了解所致。这种跑步技术取决于跑步者的人体测量身体特征、灵活性和技能。因此,本研究旨在开发一种基于运动捕捉的跑步机跑步分析测试,即 KeepRunning,以快速获得跑步模式,这将有助于教练和临床医生评估考虑到研究变量变化的跑步技术变化。因此,对跑步中最具代表性的事件和分析变量进行了回顾和建议,以开发 KeepRunning 测试。同样,通过测试-重测可靠性获得了这些变量的最小可检测变化(MDC),以证明测试的可重复性和可行性,以及使用 MDC 作为未来评估的阈值。该测试-重测由 32 名健康志愿者运动员组成,他们每周至少进行 15 公里的跑步训练,重复进行两次测试。在每次测试中,使用弹性带将标记物放置在跑步者的身体部位上,并在跑步机上跑步时捕获志愿者的运动。在这项研究中,可重复性由组内相关系数(ICC)和 MDC 定义,所有变量的 ICC 平均值为 0.94 ± 0.05,角度运动学变量的 MDC 平均值为 2.73 ± 1.16°。测试-重测的结果表明,测试的可重复性与文献中发现的相似或更好。KeepRunning 是一种跑步分析测试,它可以快速、轻松地提供涉及身体部位的数据。这些数据使临床医生和教练能够客观地为跑步者提供改善跑步技术和避免可能受伤的指示。所提出的测试将来可以与惯性运动捕捉和其他可穿戴技术一起使用。